MovieNet-PS: A Large-Scale Person Search Dataset in the Wild

5 Dec 2021  ·  Jie Qin, Peng Zheng, Yichao Yan, Rong Quan, Xiaogang Cheng, Bingbing Ni ·

Person search aims to jointly localize and identify a query person from natural, uncropped images, which has been actively studied over the past few years. In this paper, we delve into the rich context information globally and locally surrounding the target person, which we refer to as scene and group context, respectively. Unlike previous works that treat the two types of context individually, we exploit them in a unified global-local context network (GLCNet) with the intuitive aim of feature enhancement. Specifically, re-ID embeddings and context features are simultaneously learned in a multi-stage fashion, ultimately leading to enhanced, discriminative features for person search. We conduct the experiments on two person search benchmarks (i.e., CUHK-SYSU and PRW) as well as extend our approach to a more challenging setting (i.e., character search on MovieNet). Extensive experimental results demonstrate the consistent improvement of the proposed GLCNet over the state-of-the-art methods on all three datasets. Our source codes, pre-trained models, and the new dataset are publicly available at: https://github.com/ZhengPeng7/GLCNet.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Person Search CUHK-SYSU GLCNet+CBGM MAP 95.8 # 3
Top-1 96.2 # 3
Person Search CUHK-SYSU GLCNet MAP 95.5 # 4
Top-1 96.1 # 4
Person Search PRW GLCNet mAP 46.7 # 9
Top-1 84.9 # 6
Person Search PRW GLCNet+CBGM mAP 47.8 # 6
Top-1 87.8 # 2

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